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Proxy Anchor Loss for Deep Metric Learning

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Existing metric learning losses can be categorized into two classes: pair-based and proxy-based losses. The former class can leverage fine-grained semantic relations between data points, but slows convergence in general due to its high training complexity. In contrast, the latter class enables fast and reliable convergence, but cannot consider the rich data-to-data relations. This paper presents a new proxy-based loss that takes advantages of both pair- and proxy-based methods and overcomes their limitations. Thanks to the use of proxies, our loss boosts the speed of convergence and is robust against noisy labels and outliers. At the same time, it allows embedding vectors of data to interact with each other in its gradients to exploit data-to-data relations. Our method is evaluated on four public benchmarks, where a standard network trained with our loss achieves state-of-the-art performance and most quickly converges.

Sungyeon Kim, Dongwon Kim, Minsu Cho, Suha Kwak• 2020

Related benchmarks

TaskDatasetResultRank
Image RetrievalCUB-200-2011 (test)
Recall@171.1
251
Image RetrievalStanford Online Products (test)
Recall@180.3
220
Image RetrievalCUB-200 2011
Recall@184.1
146
Image RetrievalCARS196 (test)
Recall@188.3
134
Deep Metric LearningCUB200 2011 (test)
Recall@169.7
129
Image RetrievalIn-shop Clothes Retrieval Dataset
Recall@192.1
120
Image RetrievalCARS 196
Recall@192.1
98
Image RetrievalCUB
Recall@168.4
87
In-shop clothes retrievalin-shop clothes retrieval dataset (test)
Recall@192.6
78
Image RetrievalCARS 196 (test)
Recall@187.7
56
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